A general lower bound for collaborative tree exploration
Yann Disser, Frank Mousset, Andreas Noever, Nemanja, \v{S}kori\'c, Angelika Steger

TL;DR
This paper establishes new lower bounds for collaborative graph exploration with multiple agents, connecting existing results and identifying the minimum number of agents needed for efficient exploration.
Contribution
It extends lower bounds on exploration competitiveness, provides tight bounds on agent requirements, and matches exploration time bounds for trees.
Findings
Lower bounds on competitive ratio for small and large teams
Minimum agents needed for constant-competitive exploration
Exploration time bounds for trees with n agents
Abstract
We consider collaborative graph exploration with a set of agents. All agents start at a common vertex of an initially unknown graph and need to collectively visit all other vertices. We assume agents are deterministic, vertices are distinguishable, moves are simultaneous, and we allow agents to communicate globally. For this setting, we give the first non-trivial lower bounds that bridge the gap between small () and large () teams of agents. Remarkably, our bounds tightly connect to existing results in both domains. First, we significantly extend a lower bound of by Dynia et al. on the competitive ratio of a collaborative tree exploration strategy to the range for any . Second, we provide a tight lower bound on the number of agents needed for any competitive exploration algorithm. In…
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